Simular
PhD Research Intern
9mo ago
USATraineepythonpytorchjaxreinforcement learningmachine learningcomputer visionlarge language modelsrepresentation learning
PhD Research Intern collaborating on advanced AI research and experiments in reinforcement learning and multimodal grounding.
Other
- Where multiple locations are listed for this role, the position may be based in any of those locations, with priority determined according to the order of listing.
- As a PhD intern, you will:
- Collaborate with research scientists to advance methods in: Planning and RL for computer use (e.g. behavioral cloning, RL on model weights, RAG-based domain knowledge)
- Multimodal grounding (e.g. vision-only models, tree search, hybrid methods with large models)
- Reward/judge modeling (e.g. error analysis, human evaluation, training judge models)
- User intent understanding (e.g. modeling vague queries, preference learning)
- Contribute to building datasets, running experiments, and benchmarking results
- Explore novel approaches and help derisk Simular’s long-term technical roadmap
- Document and communicate findings through internal reports or academic-style writing
- Currently pursuing a PhD in Computer Science, Machine Learning, or related field
- Research background in at least one of: Reinforcement learning, Large language/vision-language models, Computer vision and multimodal perception, Representation learning
- Experience conducting experiments and publishing or preparing papers in top-tier conferences (NeurIPS, ICLR, ICML, CVPR, ACL, etc.)
- Strong coding and prototyping skills in Python and ML frameworks (PyTorch/JAX)
- Curiosity, initiative, and interest in bridging fundamental research with applied AI